Natural Language Processing SoSe Summarization. (based on the book of Jurafski and Martin 2009)
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1 Natural Language Processing SoSe 2015 Summarization Dr. Mariana Neves July 6th, 2014 (based on the book of Jurafski and Martin 2009)
2 Outline 2 Task Single-document summarization Multi-document summarization Query-focused summarization Evaluation
3 Outline 3 Task Single-document summarization Multi-document summarization Query-focused summarization Evaluation
4 Summarization 4 Half-way between Information retrieval (entire documents) Question answering (factoid answers) It is the process of distilling the most important information from a text to produce an abridged version for a particular task and user (Jurafski and Martin 2009)
5 Summarization 5 Kinds of summaries Outlines of a document Abstracts of a scientific article Headlines of news articles Snippets summarizing a Web page on a search engine results page Action items or other summaries of a (spoken) business meeting Summaries of s threads Answers to complex questions (multi-documents)
6 Summarization Dimensions Single-document Multiple-document 6 Headlines of new articles, abstracts of scientific publications Series of new stories of the same event, s from a thread
7 Summarization Dimensions Generic Query-focused 7 focus of the important information of the document(s) Question answering
8 Abstract vs. Extract Extract Abstract 8 Combination of phrases and sentences from the document(s) Uses different words to describe the content of the document(s) Most current summarizers are extractive (easier)
9 Abstract vs. Extract (figure taken from Mani 2001) 9
10 Abstract vs. Extract (figures taken from Mani 2001) 10
11 Architecture of summarization systems Content selection Information ordering Order and structure the extracted units Sentence realization 11 Usually sentences and clauses Clean up to assure fluency
12 Outline 12 Task Single-document summarization Multi-document summarization Query-focused summarization Evaluation
13 Single-document summarization Content selection Choose sentences Binary classification task 13 Important (extract worthy) Unimportant (not extract worthy) Information ordering Sentences are ordered by their original order in the document Sentence realization Remove non-essential phrases from the sentences Fusing sentences into a single one
14 Unsupervised content selection Select sentences with more salient or informative words Saliency Weight schemes instead of word frequencies 14 Topic signature: set of salient or signature terms with salient scores greater than a threshold θ Tf-idf
15 Centroid-based summarization Set of signature terms as a pseudo-sentence that is the centroid of all sentence in the document We look for sentences which are close to this centroid sentence Compute distances between each candidate sentence x and each other sentence y Choose sentences which are on average closer to other sentences 1 centrality ( x )= K 15 tf.idf.cosine ( x, y ) y
16 Rhetorical parsing Introduce more sofisticated discourse knowledge Applying a discourse parser to compute coherence relations between the discurse units (figure taken from Marcu 2000) 16
17 Supervised Content Selection Efectivelly combine various features from the text Training data: documents and respective summaries Extracts of sentences: 17 Classification task: 1 (present); 0 (not present)
18 Supervised Content Selection Features Position of the sentence in the text: Title First sentence of paragraph 2 First sentence of paragraph 3 Final sentence Cue phrases Word informativeness 18 In summary.., In conclusion.., This paper.. Topic signature
19 Supervised Content Selection Features Sentence length Long sentences rather than short ones Binary feature based on a cutoff (e.g., 5 words) Cohesion 19 Sentences that contain more terms from a lexical chain (series of related words) are extract worthy Can also be computed using graph-based methods (e.g., PageRank)
20 Supervised Content Selection 20 Using abstracts of documents as training data Need to align sentences in abstracts to the document text Longest common subsequences of non-stopwords Minimum edit distance
21 Sentence realization Sentence compression or sentence simplification Running a syntactic parser and prunning some phrases Examples: 21 Apposition: Barry Goldwater, the junior senator from Arizona, received the Republican nomination in 1964 Attribution clauses: Rebels agreed to talks with governments, international observers said Tuesday Prepositional phrases without NERs Initial adverbials: For example, On the other hand, At this point, etc. Also supervised machine learning
22 Outline 22 Task Single-document summarization Multi-document summarization Query-focused summarization Evaluation
23 Multi-document summarization Applications Summarize Web pages for a particular event in the news Finding answers to complex questions Architecture Content selection Information ordering Sentence realization Use of unsupervised methods over supervised ones 23 Not much training data available
24 Content selection (Multi-doc) 24 Redundancy of information Summaries should not be consisted of identical or similar sentences Calculating the redundancy factor between new extracted sentences and current selected sentences
25 Content selection (Multi-doc) Maximal Marginal Relevance (MMR) λ is a weight that can be tuned Similarity is some similarity function MMR penalization factor ( s)=λ max s Summary Similarity ( s, si ) i 25
26 Content selection (Multi-doc) 26 Clustering algorithm Groups sentences in clusters of related sentences Select a single (centroid) sentence from each cluster Sentence simplification or compression in this step Produce many variations of the original sentence Let the clustering or MMR select the best one
27 Information ordering (Multi-doc) Concatenate extracted sentences in a coherent way Chronological ordering 27 If date of the original document/article is available (e.g, news) But usually lack cohesion Coherence Coherence relations between sentences Cohesion and lexical chains (local cohesion)
28 Information ordering (Multi-doc) 28 Lexical cohesion Ordering sentences next to sentences which contain similar words tf.idf, cosine similarity between pair of sentences Minimizing distance between neighboring sentences
29 Information ordering (Multi-doc) 29 Centering Salient entities Syntactic realization of the focus (i.e., subject or object) Transitions between realizations
30 Information ordering (Multi-doc) 30 Centering Salient entities Syntactic realization of the focus (i.e., subject or object) Transitions between realizations
31 Information ordering (Multi-doc) (figure taken from Barzilay and Lapata 2005) 31
32 Information ordering (Multi-doc) 32 Given coherence score for pairs or sequence of sentences Problem: find the optimal ordering of sentences NP-complete But there are good approximation methods Althaus et al. 2004, Knight 1999, Cohen et al 1999, Brew 1992
33 Sentence realization (Multi-doc) Checking further for coherence Longer or more descriptive phrases should come before short, reduced or abbreviated forms Examples 33 U.S. President George W. Bush and Bush Co-reference resolution algorithm Rewrite, cleanup rules
34 Sentence realization (Multi-doc) (figure taken from Nenkova and McKeown 2003) 34
35 Sentence realization (Multi-doc) 35 Sentence fusion Parsing each sentence Alignment of the parses to find common information Build a fusion structure with overlapping information Create a new fused sentence
36 Sentence realization (Multi-doc) (figure taken from Barzilay and McKeown 2005) 36
37 Outline 37 Task Single-document summarization Multi-document summarization Query-focused summarization Evaluation
38 Query-focused summarization Question answering 38 Longer, descriptive, more informative answers
39 Query-focused summarization Example: (BioASQ training data) "What is the function of the mammalian gene Irg1?" "Human IRG1 and mouse Irg1 mediates antiviral and antimicrobial immune responses, without its exact role having been elucidated. Irg1 has been suggested to have a role in apoptosis and to play a significant role in embryonic implantation. Irg1 is reported as the mammalian ortholog of methylcitrate dehydratase." 39
40 Query-focused summarization Content selection 40 Adapt multi-doc content selection to rank sentences based relevance to the query Overlapping words query/sentences Cosine similarity query/sentence
41 Query-focused summarization Content selection Build a top-down expectations for each topic 41 Biography: dates, nationalities, educations, etc. Drug efficacy: population, problem/disease, intervention, outcome, side-effects, etc.
42 Query-focused summarization Content selection Use of templates: Example: Biography <NAME> is <WHY_FAMOUS>. She/He was born on <BIRTH_DATE> in <BIRTH_LOCATION>. She/He <EDUCATION>. <DESCRIPTIVE_SENTENCE> <DESCRIPTIVE_SENTENCE>... 42
43 Outline 43 Task Single-document summarization Multi-document sumamrization Query-focused summarization Evaluation
44 Evaluation ROUGE (Recall-Oriented Understudy for Gisting Evaluation) Measure the amount of overlapping N-grams between automatic and human-generated summaries ROUGE-1 (unigram), ROUGE-2 (bigram), etc. Count match (bigram) ROUGE2= S Summaries bigrams S Count (bigram) S Summaries bigrams S 44
45 Evaluation ROUGE Recall-oriented measure ROUGE-L ROUGE-S, ROUGE-SU 45 Longest common subsequence Skip bigrams: pair of words in a certain order by allowing any number of words between them
46 Further Reading Speech and Language Processing 46 Chapters
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